{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "collapsed": true,
    "scrolled": true
   },
   "outputs": [],
   "source": [
    "import os\n",
    "import sys\n",
    "os.chdir(\"../..\") "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": false,
    "scrolled": false
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "********************\n",
      "\n",
      "   Going to generate c302_C2_AVB_VB_DB and run for 4000 on jNeuroML_NEURON\n",
      "\n",
      "********************\n",
      "Set default parameters for C\n",
      "Set default parameters for C2\n",
      "Opened file: /home/developer/forks/CElegansNeuroML/CElegans/pythonScripts/c302/../../../herm_full_edgelist.csv\n",
      "Opened file: /home/developer/forks/CElegansNeuroML/CElegans/pythonScripts/c302/../../../herm_full_edgelist.csv\n",
      "c302      >>>  Positioning muscle: MDR01 at (80,-270,80)\n",
      "c302      >>>  Positioning muscle: MDR02 at (80,-240,80)\n",
      "c302      >>>  Positioning muscle: MDR03 at (80,-210,80)\n",
      "c302      >>>  Positioning muscle: MDR04 at (80,-180,80)\n",
      "c302      >>>  Positioning muscle: MDR05 at (80,-150,80)\n",
      "c302      >>>  Positioning muscle: MDR06 at (80,-120,80)\n",
      "c302      >>>  Positioning muscle: MDR07 at (80,-90,80)\n",
      "c302      >>>  Positioning muscle: MDR08 at (80,-60,80)\n",
      "c302      >>>  Positioning muscle: MDR09 at (80,-30,80)\n",
      "c302      >>>  Positioning muscle: MDR10 at (80,0,80)\n",
      "c302      >>>  Positioning muscle: MDR11 at (80,30,80)\n",
      "c302      >>>  Positioning muscle: MDR12 at (80,60,80)\n",
      "c302      >>>  Positioning muscle: MDR13 at (80,90,80)\n",
      "c302      >>>  Positioning muscle: MDR14 at (80,120,80)\n",
      "c302      >>>  Positioning muscle: MDR15 at (80,150,80)\n",
      "c302      >>>  Positioning muscle: MDR16 at (80,180,80)\n",
      "c302      >>>  Positioning muscle: MDR17 at (80,210,80)\n",
      "c302      >>>  Positioning muscle: MDR18 at (80,240,80)\n",
      "c302      >>>  Positioning muscle: MDR19 at (80,270,80)\n",
      "c302      >>>  Positioning muscle: MDR20 at (80,300,80)\n",
      "c302      >>>  Positioning muscle: MDR21 at (80,330,80)\n",
      "c302      >>>  Positioning muscle: MDR22 at (80,360,80)\n",
      "c302      >>>  Positioning muscle: MDR23 at (80,390,80)\n",
      "c302      >>>  Positioning muscle: MDR24 at (80,420,80)\n",
      "c302      >>>  Positioning muscle: MVR01 at (-80,-270,80)\n",
      "c302      >>>  Positioning muscle: MVR02 at (-80,-240,80)\n",
      "c302      >>>  Positioning muscle: MVR03 at (-80,-210,80)\n",
      "c302      >>>  Positioning muscle: MVR04 at (-80,-180,80)\n",
      "c302      >>>  Positioning muscle: MVR05 at (-80,-150,80)\n",
      "c302      >>>  Positioning muscle: MVR06 at (-80,-120,80)\n",
      "c302      >>>  Positioning muscle: MVR07 at (-80,-90,80)\n",
      "c302      >>>  Positioning muscle: MVR08 at (-80,-60,80)\n",
      "c302      >>>  Positioning muscle: MVR09 at (-80,-30,80)\n",
      "c302      >>>  Positioning muscle: MVR10 at (-80,0,80)\n",
      "c302      >>>  Positioning muscle: MVR11 at (-80,30,80)\n",
      "c302      >>>  Positioning muscle: MVR12 at (-80,60,80)\n",
      "c302      >>>  Positioning muscle: MVR13 at (-80,90,80)\n",
      "c302      >>>  Positioning muscle: MVR14 at (-80,120,80)\n",
      "c302      >>>  Positioning muscle: MVR15 at (-80,150,80)\n",
      "c302      >>>  Positioning muscle: MVR16 at (-80,180,80)\n",
      "c302      >>>  Positioning muscle: MVR17 at (-80,210,80)\n",
      "c302      >>>  Positioning muscle: MVR18 at (-80,240,80)\n",
      "c302      >>>  Positioning muscle: MVR19 at (-80,270,80)\n",
      "c302      >>>  Positioning muscle: MVR20 at (-80,300,80)\n",
      "c302      >>>  Positioning muscle: MVR21 at (-80,330,80)\n",
      "c302      >>>  Positioning muscle: MVR22 at (-80,360,80)\n",
      "c302      >>>  Positioning muscle: MVR23 at (-80,390,80)\n",
      "c302      >>>  Positioning muscle: MVL01 at (-80,-270,-80)\n",
      "c302      >>>  Positioning muscle: MVL02 at (-80,-240,-80)\n",
      "c302      >>>  Positioning muscle: MVL03 at (-80,-210,-80)\n",
      "c302      >>>  Positioning muscle: MVL04 at (-80,-180,-80)\n",
      "c302      >>>  Positioning muscle: MVL05 at (-80,-150,-80)\n",
      "c302      >>>  Positioning muscle: MVL06 at (-80,-120,-80)\n",
      "c302      >>>  Positioning muscle: MVL07 at (-80,-90,-80)\n",
      "c302      >>>  Positioning muscle: MVL08 at (-80,-60,-80)\n",
      "c302      >>>  Positioning muscle: MVL09 at (-80,-30,-80)\n",
      "c302      >>>  Positioning muscle: MVL10 at (-80,0,-80)\n",
      "c302      >>>  Positioning muscle: MVL11 at (-80,30,-80)\n",
      "c302      >>>  Positioning muscle: MVL12 at (-80,60,-80)\n",
      "c302      >>>  Positioning muscle: MVL13 at (-80,90,-80)\n",
      "c302      >>>  Positioning muscle: MVL14 at (-80,120,-80)\n",
      "c302      >>>  Positioning muscle: MVL15 at (-80,150,-80)\n",
      "c302      >>>  Positioning muscle: MVL16 at (-80,180,-80)\n",
      "c302      >>>  Positioning muscle: MVL17 at (-80,210,-80)\n",
      "c302      >>>  Positioning muscle: MVL18 at (-80,240,-80)\n",
      "c302      >>>  Positioning muscle: MVL19 at (-80,270,-80)\n",
      "c302      >>>  Positioning muscle: MVL20 at (-80,300,-80)\n",
      "c302      >>>  Positioning muscle: MVL21 at (-80,330,-80)\n",
      "c302      >>>  Positioning muscle: MVL22 at (-80,360,-80)\n",
      "c302      >>>  Positioning muscle: MVL23 at (-80,390,-80)\n",
      "c302      >>>  Positioning muscle: MVL24 at (-80,420,-80)\n",
      "c302      >>>  Positioning muscle: MDL01 at (80,-270,-80)\n",
      "c302      >>>  Positioning muscle: MDL02 at (80,-240,-80)\n",
      "c302      >>>  Positioning muscle: MDL03 at (80,-210,-80)\n",
      "c302      >>>  Positioning muscle: MDL04 at (80,-180,-80)\n",
      "c302      >>>  Positioning muscle: MDL05 at (80,-150,-80)\n",
      "c302      >>>  Positioning muscle: MDL06 at (80,-120,-80)\n",
      "c302      >>>  Positioning muscle: MDL07 at (80,-90,-80)\n",
      "c302      >>>  Positioning muscle: MDL08 at (80,-60,-80)\n",
      "c302      >>>  Positioning muscle: MDL09 at (80,-30,-80)\n",
      "c302      >>>  Positioning muscle: MDL10 at (80,0,-80)\n",
      "c302      >>>  Positioning muscle: MDL11 at (80,30,-80)\n",
      "c302      >>>  Positioning muscle: MDL12 at (80,60,-80)\n",
      "c302      >>>  Positioning muscle: MDL13 at (80,90,-80)\n",
      "c302      >>>  Positioning muscle: MDL14 at (80,120,-80)\n",
      "c302      >>>  Positioning muscle: MDL15 at (80,150,-80)\n",
      "c302      >>>  Positioning muscle: MDL16 at (80,180,-80)\n",
      "c302      >>>  Positioning muscle: MDL17 at (80,210,-80)\n",
      "c302      >>>  Positioning muscle: MDL18 at (80,240,-80)\n",
      "c302      >>>  Positioning muscle: MDL19 at (80,270,-80)\n",
      "c302      >>>  Positioning muscle: MDL20 at (80,300,-80)\n",
      "c302      >>>  Positioning muscle: MDL21 at (80,330,-80)\n",
      "c302      >>>  Positioning muscle: MDL22 at (80,360,-80)\n",
      "c302      >>>  Positioning muscle: MDL23 at (80,390,-80)\n",
      "c302      >>>  Positioning muscle: MDL24 at (80,420,-80)\n",
      "AVBL-AVBR 6 exc Acetylcholine\n",
      "AVBL-VB2 3 exc Acetylcholine\n",
      "AVBR-AVBL 2 exc Acetylcholine\n",
      "AVBR-DB4 1 exc Acetylcholine\n",
      "VB4-VB5 1 exc Acetylcholine\n",
      "AVBL-AVBR_GJ 17 exc Generic_GJ\n",
      "AVBL-DB2_GJ 4 exc Generic_GJ\n",
      "AVBL-DB3_GJ 9 exc Generic_GJ\n",
      "AVBL-DB4_GJ 4 exc Generic_GJ\n",
      "AVBL-DB5_GJ 3 exc Generic_GJ\n",
      "AVBL-DB6_GJ 4 exc Generic_GJ\n",
      "AVBL-DB7_GJ 13 exc Generic_GJ\n",
      "AVBL-VB1_GJ 1 exc Generic_GJ\n",
      "AVBL-VB2_GJ 14 exc Generic_GJ\n",
      "AVBL-VB4_GJ 3 exc Generic_GJ\n",
      "AVBL-VB5_GJ 3 exc Generic_GJ\n",
      "AVBL-VB6_GJ 3 exc Generic_GJ\n",
      "AVBL-VB7_GJ 4 exc Generic_GJ\n",
      "AVBL-VB8_GJ 4 exc Generic_GJ\n",
      "AVBL-VB9_GJ 3 exc Generic_GJ\n",
      "AVBL-VB10_GJ 4 exc Generic_GJ\n",
      "AVBL-VB11_GJ 5 exc Generic_GJ\n",
      "AVBR-AVBL_GJ 17 exc Generic_GJ\n",
      "AVBR-DB1_GJ 15 exc Generic_GJ\n",
      "AVBR-DB2_GJ 3 exc Generic_GJ\n",
      "AVBR-DB3_GJ 2 exc Generic_GJ\n",
      "AVBR-DB4_GJ 5 exc Generic_GJ\n",
      "AVBR-DB5_GJ 4 exc Generic_GJ\n",
      "AVBR-DB6_GJ 3 exc Generic_GJ\n",
      "AVBR-DB7_GJ 3 exc Generic_GJ\n",
      "AVBR-VB2_GJ 6 exc Generic_GJ\n",
      "AVBR-VB3_GJ 7 exc Generic_GJ\n",
      "AVBR-VB4_GJ 5 exc Generic_GJ\n",
      "AVBR-VB5_GJ 3 exc Generic_GJ\n",
      "AVBR-VB6_GJ 4 exc Generic_GJ\n",
      "AVBR-VB7_GJ 3 exc Generic_GJ\n",
      "AVBR-VB8_GJ 3 exc Generic_GJ\n",
      "AVBR-VB9_GJ 4 exc Generic_GJ\n",
      "AVBR-VB10_GJ 3 exc Generic_GJ\n",
      "AVBR-VB11_GJ 6 exc Generic_GJ\n",
      "DB1-AVBR_GJ 15 exc Generic_GJ\n",
      "DB1-DB2_GJ 5 exc Generic_GJ\n",
      "DB1-VB3_GJ 5 exc Generic_GJ\n",
      "DB2-AVBL_GJ 4 exc Generic_GJ\n",
      "DB2-AVBR_GJ 3 exc Generic_GJ\n",
      "DB2-DB1_GJ 5 exc Generic_GJ\n",
      "DB2-DB3_GJ 14 exc Generic_GJ\n",
      "DB2-VB4_GJ 1 exc Generic_GJ\n",
      "DB3-AVBL_GJ 9 exc Generic_GJ\n",
      "DB3-AVBR_GJ 2 exc Generic_GJ\n",
      "DB3-DB2_GJ 14 exc Generic_GJ\n",
      "DB3-DB4_GJ 1 exc Generic_GJ\n",
      "DB3-VB6_GJ 1 exc Generic_GJ\n",
      "DB4-AVBL_GJ 4 exc Generic_GJ\n",
      "DB4-AVBR_GJ 5 exc Generic_GJ\n",
      "DB4-DB3_GJ 1 exc Generic_GJ\n",
      "DB4-DB5_GJ 5 exc Generic_GJ\n",
      "DB5-AVBL_GJ 3 exc Generic_GJ\n",
      "DB5-AVBR_GJ 4 exc Generic_GJ\n",
      "DB5-DB4_GJ 5 exc Generic_GJ\n",
      "DB5-DB6_GJ 5 exc Generic_GJ\n",
      "DB6-AVBL_GJ 3 exc Generic_GJ\n",
      "DB6-AVBR_GJ 4 exc Generic_GJ\n",
      "DB6-DB5_GJ 5 exc Generic_GJ\n",
      "DB6-DB7_GJ 5 exc Generic_GJ\n",
      "DB7-AVBL_GJ 13 exc Generic_GJ\n",
      "DB7-AVBR_GJ 3 exc Generic_GJ\n",
      "DB7-DB6_GJ 5 exc Generic_GJ\n",
      "VB1-AVBL_GJ 1 exc Generic_GJ\n",
      "VB1-VB2_GJ 2 exc Generic_GJ\n",
      "VB2-AVBL_GJ 14 exc Generic_GJ\n",
      "VB2-AVBR_GJ 6 exc Generic_GJ\n",
      "VB2-VB1_GJ 2 exc Generic_GJ\n",
      "VB2-VB3_GJ 10 exc Generic_GJ\n",
      "VB2-VB4_GJ 1 exc Generic_GJ\n",
      "VB3-AVBR_GJ 7 exc Generic_GJ\n",
      "VB3-DB1_GJ 5 exc Generic_GJ\n",
      "VB3-VB2_GJ 10 exc Generic_GJ\n",
      "VB3-VB4_GJ 1 exc Generic_GJ\n",
      "VB4-AVBL_GJ 3 exc Generic_GJ\n",
      "VB4-AVBR_GJ 5 exc Generic_GJ\n",
      "VB4-DB2_GJ 1 exc Generic_GJ\n",
      "VB4-VB2_GJ 1 exc Generic_GJ\n",
      "VB4-VB3_GJ 1 exc Generic_GJ\n",
      "VB4-VB5_GJ 1 exc Generic_GJ\n",
      "VB5-AVBL_GJ 3 exc Generic_GJ\n",
      "VB5-AVBR_GJ 3 exc Generic_GJ\n",
      "VB5-VB4_GJ 1 exc Generic_GJ\n",
      "VB5-VB6_GJ 5 exc Generic_GJ\n",
      "VB6-AVBL_GJ 3 exc Generic_GJ\n",
      "VB6-AVBR_GJ 4 exc Generic_GJ\n",
      "VB6-DB3_GJ 1 exc Generic_GJ\n",
      "VB6-VB5_GJ 5 exc Generic_GJ\n",
      "VB6-VB7_GJ 5 exc Generic_GJ\n",
      "VB7-AVBL_GJ 4 exc Generic_GJ\n",
      "VB7-AVBR_GJ 3 exc Generic_GJ\n",
      "VB7-VB6_GJ 5 exc Generic_GJ\n",
      "VB7-VB8_GJ 5 exc Generic_GJ\n",
      "VB8-AVBL_GJ 3 exc Generic_GJ\n",
      "VB8-AVBR_GJ 4 exc Generic_GJ\n",
      "VB8-VB7_GJ 5 exc Generic_GJ\n",
      "VB8-VB9_GJ 5 exc Generic_GJ\n",
      "VB9-AVBL_GJ 4 exc Generic_GJ\n",
      "VB9-AVBR_GJ 3 exc Generic_GJ\n",
      "VB9-VB8_GJ 5 exc Generic_GJ\n",
      "VB9-VB10_GJ 5 exc Generic_GJ\n",
      "VB10-AVBL_GJ 3 exc Generic_GJ\n",
      "VB10-AVBR_GJ 4 exc Generic_GJ\n",
      "VB10-VB9_GJ 5 exc Generic_GJ\n",
      "VB10-VB11_GJ 4 exc Generic_GJ\n",
      "VB11-AVBL_GJ 5 exc Generic_GJ\n",
      "VB11-AVBR_GJ 6 exc Generic_GJ\n",
      "VB11-VB10_GJ 4 exc Generic_GJ\n",
      "AVBR-MVL16 1 exc Acetylcholine\n",
      "DB1-MDL06 3 exc Acetylcholine\n",
      "DB1-MDL08 3 exc Acetylcholine\n",
      "DB1-MDL09 6 exc Acetylcholine\n",
      "DB1-MDR08 6 exc Acetylcholine\n",
      "DB1-MDR09 2 exc Acetylcholine\n",
      "DB2-MDL09 2 exc Acetylcholine\n",
      "DB2-MDL10 4 exc Acetylcholine\n",
      "DB2-MDL11 5 exc Acetylcholine\n",
      "DB2-MDL12 1 exc Acetylcholine\n",
      "DB2-MDR09 1 exc Acetylcholine\n",
      "DB2-MDR10 6 exc Acetylcholine\n",
      "DB2-MDR11 8 exc Acetylcholine\n",
      "DB3-MDL11 6 exc Acetylcholine\n",
      "DB3-MDL12 1 exc Acetylcholine\n",
      "DB3-MDL13 3 exc Acetylcholine\n",
      "DB3-MDL14 1 exc Acetylcholine\n",
      "DB3-MDR11 2 exc Acetylcholine\n",
      "DB3-MDR12 13 exc Acetylcholine\n",
      "DB3-MDR13 1 exc Acetylcholine\n",
      "DB4-MDL13 4 exc Acetylcholine\n",
      "DB4-MDL14 1 exc Acetylcholine\n",
      "DB4-MDL15 3 exc Acetylcholine\n",
      "DB4-MDL16 3 exc Acetylcholine\n",
      "DB4-MDR13 3 exc Acetylcholine\n",
      "DB4-MDR14 5 exc Acetylcholine\n",
      "DB4-MDR15 3 exc Acetylcholine\n",
      "DB4-MDR16 3 exc Acetylcholine\n",
      "DB5-MDL14 2 exc Acetylcholine\n",
      "DB5-MDL15 2 exc Acetylcholine\n",
      "DB5-MDL16 2 exc Acetylcholine\n",
      "DB5-MDL17 2 exc Acetylcholine\n",
      "DB5-MDL18 2 exc Acetylcholine\n",
      "DB5-MDL19 2 exc Acetylcholine\n",
      "DB5-MDR14 2 exc Acetylcholine\n",
      "DB5-MDR15 2 exc Acetylcholine\n",
      "DB5-MDR16 2 exc Acetylcholine\n",
      "DB5-MDR17 2 exc Acetylcholine\n",
      "DB5-MDR18 2 exc Acetylcholine\n",
      "DB5-MDR19 2 exc Acetylcholine\n",
      "DB6-MDL16 2 exc Acetylcholine\n",
      "DB6-MDL17 2 exc Acetylcholine\n",
      "DB6-MDL18 2 exc Acetylcholine\n",
      "DB6-MDL19 2 exc Acetylcholine\n",
      "DB6-MDL20 2 exc Acetylcholine\n",
      "DB6-MDL21 2 exc Acetylcholine\n",
      "DB6-MDR16 2 exc Acetylcholine\n",
      "DB6-MDR17 2 exc Acetylcholine\n",
      "DB6-MDR18 2 exc Acetylcholine\n",
      "DB6-MDR19 2 exc Acetylcholine\n",
      "DB6-MDR20 2 exc Acetylcholine\n",
      "DB6-MDR21 2 exc Acetylcholine\n",
      "DB7-MDL19 2 exc Acetylcholine\n",
      "DB7-MDL20 2 exc Acetylcholine\n",
      "DB7-MDL21 2 exc Acetylcholine\n",
      "DB7-MDL22 2 exc Acetylcholine\n",
      "DB7-MDL23 2 exc Acetylcholine\n",
      "DB7-MDL24 2 exc Acetylcholine\n",
      "DB7-MDR19 2 exc Acetylcholine\n",
      "DB7-MDR20 2 exc Acetylcholine\n",
      "DB7-MDR21 2 exc Acetylcholine\n",
      "DB7-MDR22 2 exc Acetylcholine\n",
      "DB7-MDR23 2 exc Acetylcholine\n",
      "DB7-MDR24 2 exc Acetylcholine\n",
      "VB1-MVL07 2 exc Acetylcholine\n",
      "VB1-MVR07 5 exc Acetylcholine\n",
      "VB1-MVR09 1 exc Acetylcholine\n",
      "VB2-MVL08 2 exc Acetylcholine\n",
      "VB2-MVL09 14 exc Acetylcholine\n",
      "VB2-MVL10 4 exc Acetylcholine\n",
      "VB2-MVL11 1 exc Acetylcholine\n",
      "VB2-MVR08 6 exc Acetylcholine\n",
      "VB2-MVR10 10 exc Acetylcholine\n",
      "VB2-MVR11 6 exc Acetylcholine\n",
      "VB3-MVL10 1 exc Acetylcholine\n",
      "VB3-MVL11 8 exc Acetylcholine\n",
      "VB3-MVL12 8 exc Acetylcholine\n",
      "VB3-MVL13 3 exc Acetylcholine\n",
      "VB3-MVR10 4 exc Acetylcholine\n",
      "VB3-MVR11 6 exc Acetylcholine\n",
      "VB3-MVR12 8 exc Acetylcholine\n",
      "VB3-MVR13 4 exc Acetylcholine\n",
      "VB4-MVL12 3 exc Acetylcholine\n",
      "VB4-MVL13 5 exc Acetylcholine\n",
      "VB4-MVR12 3 exc Acetylcholine\n",
      "VB4-MVR13 3 exc Acetylcholine\n",
      "VB4-MVR14 4 exc Acetylcholine\n",
      "VB5-MVL12 3 exc Acetylcholine\n",
      "VB5-MVL13 1 exc Acetylcholine\n",
      "VB5-MVL14 8 exc Acetylcholine\n",
      "VB5-MVL15 7 exc Acetylcholine\n",
      "VB5-MVR13 7 exc Acetylcholine\n",
      "VB5-MVR14 6 exc Acetylcholine\n",
      "VB5-MVR15 1 exc Acetylcholine\n",
      "VB6-MVL15 4 exc Acetylcholine\n",
      "VB6-MVL16 3 exc Acetylcholine\n",
      "VB6-MVR14 6 exc Acetylcholine\n",
      "VB6-MVR15 12 exc Acetylcholine\n",
      "VB6-MVR16 4 exc Acetylcholine\n",
      "VB7-MVL16 4 exc Acetylcholine\n",
      "VB7-MVL17 4 exc Acetylcholine\n",
      "VB7-MVL18 4 exc Acetylcholine\n",
      "VB7-MVR16 4 exc Acetylcholine\n",
      "VB7-MVR17 4 exc Acetylcholine\n",
      "VB7-MVR18 4 exc Acetylcholine\n",
      "VB8-MVL18 4 exc Acetylcholine\n",
      "VB8-MVL19 4 exc Acetylcholine\n",
      "VB8-MVL20 4 exc Acetylcholine\n",
      "VB8-MVR18 4 exc Acetylcholine\n",
      "VB8-MVR19 4 exc Acetylcholine\n",
      "VB8-MVR20 4 exc Acetylcholine\n",
      "VB9-MVL19 4 exc Acetylcholine\n",
      "VB9-MVL20 4 exc Acetylcholine\n",
      "VB9-MVL21 4 exc Acetylcholine\n",
      "VB9-MVR19 4 exc Acetylcholine\n",
      "VB9-MVR20 4 exc Acetylcholine\n",
      "VB9-MVR21 4 exc Acetylcholine\n",
      "VB10-MVL20 4 exc Acetylcholine\n",
      "VB10-MVL21 4 exc Acetylcholine\n",
      "VB10-MVL22 4 exc Acetylcholine\n",
      "VB10-MVR20 4 exc Acetylcholine\n",
      "VB10-MVR21 4 exc Acetylcholine\n",
      "VB10-MVR22 4 exc Acetylcholine\n",
      "VB11-MVL21 4 exc Acetylcholine\n",
      "VB11-MVL22 4 exc Acetylcholine\n",
      "VB11-MVL23 4 exc Acetylcholine\n",
      "VB11-MVR21 4 exc Acetylcholine\n",
      "VB11-MVR22 4 exc Acetylcholine\n",
      "VB11-MVR23 4 exc Acetylcholine\n",
      "MDL01-MDL02_GJ 15 exc Generic_GJ\n",
      "MDL01-MDL03_GJ 15 exc Generic_GJ\n",
      "MDL02-MDL01_GJ 15 exc Generic_GJ\n",
      "MDL02-MDL03_GJ 15 exc Generic_GJ\n",
      "MDL03-MDL01_GJ 15 exc Generic_GJ\n",
      "MDL03-MDL02_GJ 15 exc Generic_GJ\n",
      "MDL03-MDL04_GJ 15 exc Generic_GJ\n",
      "MDL04-MDL03_GJ 15 exc Generic_GJ\n",
      "MDL04-MDL05_GJ 15 exc Generic_GJ\n",
      "MDL05-MDL04_GJ 15 exc Generic_GJ\n",
      "MDL05-MDL06_GJ 15 exc Generic_GJ\n",
      "MDL06-MDL05_GJ 15 exc Generic_GJ\n",
      "MDL06-MDL07_GJ 15 exc Generic_GJ\n",
      "MDL07-MDL06_GJ 15 exc Generic_GJ\n",
      "MDL07-MDL08_GJ 15 exc Generic_GJ\n",
      "MDL08-MDL07_GJ 15 exc Generic_GJ\n",
      "MDL08-MDL09_GJ 15 exc Generic_GJ\n",
      "MDL09-MDL08_GJ 15 exc Generic_GJ\n",
      "MDL09-MDL10_GJ 15 exc Generic_GJ\n",
      "MDL10-MDL09_GJ 15 exc Generic_GJ\n",
      "MDL10-MDL11_GJ 15 exc Generic_GJ\n",
      "MDL11-MDL10_GJ 15 exc Generic_GJ\n",
      "MDL11-MDL12_GJ 15 exc Generic_GJ\n",
      "MDL12-MDL11_GJ 15 exc Generic_GJ\n",
      "MDL12-MDL13_GJ 15 exc Generic_GJ\n",
      "MDL13-MDL12_GJ 15 exc Generic_GJ\n",
      "MDL13-MDL14_GJ 15 exc Generic_GJ\n",
      "MDL14-MDL13_GJ 15 exc Generic_GJ\n",
      "MDL14-MDL15_GJ 15 exc Generic_GJ\n",
      "MDL15-MDL14_GJ 15 exc Generic_GJ\n",
      "MDL15-MDL16_GJ 15 exc Generic_GJ\n",
      "MDL16-MDL15_GJ 15 exc Generic_GJ\n",
      "MDL16-MDL17_GJ 15 exc Generic_GJ\n",
      "MDL17-MDL16_GJ 15 exc Generic_GJ\n",
      "MDL17-MDL18_GJ 15 exc Generic_GJ\n",
      "MDL18-MDL17_GJ 15 exc Generic_GJ\n",
      "MDL18-MDL19_GJ 15 exc Generic_GJ\n",
      "MDL19-MDL18_GJ 15 exc Generic_GJ\n",
      "MDL19-MDL20_GJ 15 exc Generic_GJ\n",
      "MDL20-MDL19_GJ 15 exc Generic_GJ\n",
      "MDL20-MDL21_GJ 15 exc Generic_GJ\n",
      "MDL21-MDL20_GJ 15 exc Generic_GJ\n",
      "MDL21-MDL22_GJ 15 exc Generic_GJ\n",
      "MDL22-MDL21_GJ 15 exc Generic_GJ\n",
      "MDL22-MDL23_GJ 15 exc Generic_GJ\n",
      "MDL23-MDL22_GJ 15 exc Generic_GJ\n",
      "MDL23-MDL24_GJ 15 exc Generic_GJ\n",
      "MDL24-MDL23_GJ 15 exc Generic_GJ\n",
      "MDR01-MDR02_GJ 15 exc Generic_GJ\n",
      "MDR01-MDR03_GJ 15 exc Generic_GJ\n",
      "MDR02-MDR01_GJ 15 exc Generic_GJ\n",
      "MDR02-MDR03_GJ 15 exc Generic_GJ\n",
      "MDR03-MDR01_GJ 15 exc Generic_GJ\n",
      "MDR03-MDR02_GJ 15 exc Generic_GJ\n",
      "MDR03-MDR04_GJ 15 exc Generic_GJ\n",
      "MDR04-MDR03_GJ 15 exc Generic_GJ\n",
      "MDR04-MDR05_GJ 15 exc Generic_GJ\n",
      "MDR05-MDR04_GJ 15 exc Generic_GJ\n",
      "MDR05-MDR06_GJ 15 exc Generic_GJ\n",
      "MDR06-MDR05_GJ 15 exc Generic_GJ\n",
      "MDR06-MDR07_GJ 15 exc Generic_GJ\n",
      "MDR07-MDR06_GJ 15 exc Generic_GJ\n",
      "MDR07-MDR08_GJ 15 exc Generic_GJ\n",
      "MDR08-MDR07_GJ 15 exc Generic_GJ\n",
      "MDR08-MDR09_GJ 15 exc Generic_GJ\n",
      "MDR09-MDR08_GJ 15 exc Generic_GJ\n",
      "MDR09-MDR10_GJ 15 exc Generic_GJ\n",
      "MDR10-MDR09_GJ 15 exc Generic_GJ\n",
      "MDR10-MDR11_GJ 15 exc Generic_GJ\n",
      "MDR11-MDR10_GJ 15 exc Generic_GJ\n",
      "MDR11-MDR12_GJ 15 exc Generic_GJ\n",
      "MDR12-MDR11_GJ 15 exc Generic_GJ\n",
      "MDR12-MDR13_GJ 15 exc Generic_GJ\n",
      "MDR13-MDR12_GJ 15 exc Generic_GJ\n",
      "MDR13-MDR14_GJ 15 exc Generic_GJ\n",
      "MDR14-MDR13_GJ 15 exc Generic_GJ\n",
      "MDR14-MDR15_GJ 15 exc Generic_GJ\n",
      "MDR15-MDR14_GJ 15 exc Generic_GJ\n",
      "MDR15-MDR16_GJ 15 exc Generic_GJ\n",
      "MDR16-MDR15_GJ 15 exc Generic_GJ\n",
      "MDR16-MDR17_GJ 15 exc Generic_GJ\n",
      "MDR17-MDR16_GJ 15 exc Generic_GJ\n",
      "MDR17-MDR18_GJ 15 exc Generic_GJ\n",
      "MDR18-MDR17_GJ 15 exc Generic_GJ\n",
      "MDR18-MDR19_GJ 15 exc Generic_GJ\n",
      "MDR19-MDR18_GJ 15 exc Generic_GJ\n",
      "MDR19-MDR20_GJ 15 exc Generic_GJ\n",
      "MDR20-MDR19_GJ 15 exc Generic_GJ\n",
      "MDR20-MDR21_GJ 15 exc Generic_GJ\n",
      "MDR21-MDR20_GJ 15 exc Generic_GJ\n",
      "MDR21-MDR22_GJ 15 exc Generic_GJ\n",
      "MDR22-MDR21_GJ 15 exc Generic_GJ\n",
      "MDR22-MDR23_GJ 15 exc Generic_GJ\n",
      "MDR23-MDR22_GJ 15 exc Generic_GJ\n",
      "MDR23-MDR24_GJ 15 exc Generic_GJ\n",
      "MDR24-MDR23_GJ 15 exc Generic_GJ\n",
      "MVL01-MVL02_GJ 15 exc Generic_GJ\n",
      "MVL01-MVL03_GJ 15 exc Generic_GJ\n",
      "MVL02-MVL01_GJ 15 exc Generic_GJ\n",
      "MVL02-MVL03_GJ 15 exc Generic_GJ\n",
      "MVL03-MVL01_GJ 15 exc Generic_GJ\n",
      "MVL03-MVL02_GJ 15 exc Generic_GJ\n",
      "MVL03-MVL04_GJ 15 exc Generic_GJ\n",
      "MVL04-MVL03_GJ 15 exc Generic_GJ\n",
      "MVL04-MVL05_GJ 15 exc Generic_GJ\n",
      "MVL05-MVL04_GJ 15 exc Generic_GJ\n",
      "MVL05-MVL06_GJ 15 exc Generic_GJ\n",
      "MVL06-MVL05_GJ 15 exc Generic_GJ\n",
      "MVL06-MVL07_GJ 15 exc Generic_GJ\n",
      "MVL07-MVL06_GJ 15 exc Generic_GJ\n",
      "MVL07-MVL08_GJ 15 exc Generic_GJ\n",
      "MVL08-MVL07_GJ 15 exc Generic_GJ\n",
      "MVL08-MVL09_GJ 15 exc Generic_GJ\n",
      "MVL09-MVL08_GJ 15 exc Generic_GJ\n",
      "MVL09-MVL10_GJ 15 exc Generic_GJ\n",
      "MVL09-MVR08_GJ 2 exc Generic_GJ\n",
      "MVL10-MVL09_GJ 15 exc Generic_GJ\n",
      "MVL10-MVL11_GJ 15 exc Generic_GJ\n",
      "MVL11-MVL10_GJ 15 exc Generic_GJ\n",
      "MVL11-MVL12_GJ 15 exc Generic_GJ\n",
      "MVL12-MVL11_GJ 15 exc Generic_GJ\n",
      "MVL12-MVL13_GJ 15 exc Generic_GJ\n",
      "MVL13-MVL12_GJ 15 exc Generic_GJ\n",
      "MVL13-MVL14_GJ 15 exc Generic_GJ\n",
      "MVL14-MVL13_GJ 15 exc Generic_GJ\n",
      "MVL14-MVL15_GJ 15 exc Generic_GJ\n",
      "MVL15-MVL14_GJ 15 exc Generic_GJ\n",
      "MVL15-MVL16_GJ 15 exc Generic_GJ\n",
      "MVL16-MVL15_GJ 15 exc Generic_GJ\n",
      "MVL16-MVL17_GJ 15 exc Generic_GJ\n",
      "MVL17-MVL16_GJ 15 exc Generic_GJ\n",
      "MVL17-MVL18_GJ 15 exc Generic_GJ\n",
      "MVL18-MVL17_GJ 15 exc Generic_GJ\n",
      "MVL18-MVL19_GJ 15 exc Generic_GJ\n",
      "MVL19-MVL18_GJ 15 exc Generic_GJ\n",
      "MVL19-MVL20_GJ 15 exc Generic_GJ\n",
      "MVL20-MVL19_GJ 15 exc Generic_GJ\n",
      "MVL20-MVL21_GJ 15 exc Generic_GJ\n",
      "MVL21-MVL20_GJ 15 exc Generic_GJ\n",
      "MVL21-MVL22_GJ 15 exc Generic_GJ\n",
      "MVL22-MVL21_GJ 15 exc Generic_GJ\n",
      "MVL22-MVL23_GJ 15 exc Generic_GJ\n",
      "MVL23-MVL22_GJ 15 exc Generic_GJ\n",
      "MVR01-MVR02_GJ 15 exc Generic_GJ\n",
      "MVR01-MVR03_GJ 15 exc Generic_GJ\n",
      "MVR02-MVR01_GJ 15 exc Generic_GJ\n",
      "MVR02-MVR03_GJ 15 exc Generic_GJ\n",
      "MVR03-MVR01_GJ 15 exc Generic_GJ\n",
      "MVR03-MVR02_GJ 15 exc Generic_GJ\n",
      "MVR03-MVR04_GJ 15 exc Generic_GJ\n",
      "MVR04-MVR03_GJ 15 exc Generic_GJ\n",
      "MVR04-MVR05_GJ 15 exc Generic_GJ\n",
      "MVR05-MVR04_GJ 15 exc Generic_GJ\n",
      "MVR05-MVR06_GJ 15 exc Generic_GJ\n",
      "MVR06-MVR05_GJ 15 exc Generic_GJ\n",
      "MVR06-MVR07_GJ 15 exc Generic_GJ\n",
      "MVR07-MVR06_GJ 15 exc Generic_GJ\n",
      "MVR07-MVR08_GJ 15 exc Generic_GJ\n",
      "MVR08-MVL09_GJ 2 exc Generic_GJ\n",
      "MVR08-MVR07_GJ 15 exc Generic_GJ\n",
      "MVR08-MVR09_GJ 15 exc Generic_GJ\n",
      "MVR09-MVR08_GJ 15 exc Generic_GJ\n",
      "MVR09-MVR10_GJ 15 exc Generic_GJ\n",
      "MVR10-MVR09_GJ 15 exc Generic_GJ\n",
      "MVR10-MVR11_GJ 15 exc Generic_GJ\n",
      "MVR11-MVR10_GJ 15 exc Generic_GJ\n",
      "MVR11-MVR12_GJ 15 exc Generic_GJ\n",
      "MVR12-MVR11_GJ 15 exc Generic_GJ\n",
      "MVR12-MVR13_GJ 15 exc Generic_GJ\n",
      "MVR13-MVR12_GJ 15 exc Generic_GJ\n",
      "MVR13-MVR14_GJ 15 exc Generic_GJ\n",
      "MVR14-MVR13_GJ 15 exc Generic_GJ\n",
      "MVR14-MVR15_GJ 15 exc Generic_GJ\n",
      "MVR15-MVR14_GJ 15 exc Generic_GJ\n",
      "MVR15-MVR16_GJ 15 exc Generic_GJ\n",
      "MVR16-MVR15_GJ 15 exc Generic_GJ\n",
      "MVR16-MVR17_GJ 15 exc Generic_GJ\n",
      "MVR17-MVR16_GJ 15 exc Generic_GJ\n",
      "MVR17-MVR18_GJ 15 exc Generic_GJ\n",
      "MVR18-MVR17_GJ 15 exc Generic_GJ\n",
      "MVR18-MVR19_GJ 15 exc Generic_GJ\n",
      "MVR19-MVR18_GJ 15 exc Generic_GJ\n",
      "MVR19-MVR20_GJ 15 exc Generic_GJ\n",
      "MVR20-MVR19_GJ 15 exc Generic_GJ\n",
      "MVR20-MVR21_GJ 15 exc Generic_GJ\n",
      "MVR21-MVR20_GJ 15 exc Generic_GJ\n",
      "MVR21-MVR22_GJ 15 exc Generic_GJ\n",
      "MVR22-MVR21_GJ 15 exc Generic_GJ\n",
      "MVR22-MVR23_GJ 15 exc Generic_GJ\n",
      "MVR23-MVR22_GJ 15 exc Generic_GJ\n",
      "c302      >>>  Writing generated network to: /home/developer/forks/CElegansNeuroML/CElegans/pythonScripts/c302/examples/c302_C2_AVB_VB_DB.nml\n",
      "Validating examples/c302_C2_AVB_VB_DB.nml against /usr/local/lib/python2.7/dist-packages/neuroml/nml/NeuroML_v2beta4.xsd\n",
      "It's valid!\n",
      "(Re)written network file to: examples/c302_C2_AVB_VB_DB.nml\n",
      "c302      >>>  Finished simulation of LEMS_c302_C2_AVB_VB_DB.xml and have reloaded results\n",
      "c302      >>>  Reloaded data: ['MVL16/0/GenericMuscleCell/caConc', 'MDR14/0/GenericMuscleCell/caConc', 'MDR20/0/GenericMuscleCell/caConc', 'MDR14/0/GenericMuscleCell/v', 'MVL19/0/GenericMuscleCell/caConc', 'MVL24/0/GenericMuscleCell/v', 'MVL22/0/GenericMuscleCell/v', 'DB5/0/GenericNeuronCell/v', 'MVR02/0/GenericMuscleCell/v', 'MDR21/0/GenericMuscleCell/caConc', 'MDL08/0/GenericMuscleCell/v', 'VB2/0/GenericNeuronCell/caConc', 'MVR09/0/GenericMuscleCell/caConc', 'MDR10/0/GenericMuscleCell/v', 'MVL07/0/GenericMuscleCell/v', 'MVR05/0/GenericMuscleCell/v', 'MVL24/0/GenericMuscleCell/caConc', 'VB11/0/GenericNeuronCell/v', 'MDR18/0/GenericMuscleCell/v', 'MDR04/0/GenericMuscleCell/caConc', 'MVL10/0/GenericMuscleCell/v', 'MDR13/0/GenericMuscleCell/caConc', 'VB1/0/GenericNeuronCell/v', 'MDR11/0/GenericMuscleCell/v', 'MDL05/0/GenericMuscleCell/caConc', 'MDL09/0/GenericMuscleCell/v', 'MVR04/0/GenericMuscleCell/v', 'MVL05/0/GenericMuscleCell/v', 'MVR19/0/GenericMuscleCell/caConc', 'MVR10/0/GenericMuscleCell/v', 'MDR17/0/GenericMuscleCell/v', 'VB1/0/GenericNeuronCell/caConc', 'MDL23/0/GenericMuscleCell/v', 'MDR03/0/GenericMuscleCell/caConc', 'MVL07/0/GenericMuscleCell/caConc', 'MDL06/0/GenericMuscleCell/v', 'MDR18/0/GenericMuscleCell/caConc', 'MDL11/0/GenericMuscleCell/v', 'MDR16/0/GenericMuscleCell/v', 'MVR01/0/GenericMuscleCell/v', 'VB7/0/GenericNeuronCell/v', 'DB6/0/GenericNeuronCell/v', 'MDR19/0/GenericMuscleCell/v', 'MDL16/0/GenericMuscleCell/caConc', 'DB4/0/GenericNeuronCell/v', 'MDL24/0/GenericMuscleCell/v', 'MDL02/0/GenericMuscleCell/caConc', 'MVR21/0/GenericMuscleCell/v', 'DB1/0/GenericNeuronCell/v', 'MVL01/0/GenericMuscleCell/caConc', 'VB3/0/GenericNeuronCell/v', 'VB2/0/GenericNeuronCell/v', 'MDR02/0/GenericMuscleCell/v', 'MDR13/0/GenericMuscleCell/v', 'DB4/0/GenericNeuronCell/caConc', 'MDL19/0/GenericMuscleCell/caConc', 'MDL16/0/GenericMuscleCell/v', 'MDR11/0/GenericMuscleCell/caConc', 'MVL05/0/GenericMuscleCell/caConc', 'VB5/0/GenericNeuronCell/caConc', 'VB3/0/GenericNeuronCell/caConc', 'AVBL/0/GenericNeuronCell/v', 'MVL20/0/GenericMuscleCell/caConc', 'VB9/0/GenericNeuronCell/v', 'DB3/0/GenericNeuronCell/caConc', 'MDR16/0/GenericMuscleCell/caConc', 'MDR05/0/GenericMuscleCell/v', 'DB5/0/GenericNeuronCell/caConc', 'MDL13/0/GenericMuscleCell/v', 'MDR09/0/GenericMuscleCell/v', 'MVL14/0/GenericMuscleCell/v', 'MDR15/0/GenericMuscleCell/v', 'MVR22/0/GenericMuscleCell/v', 'MVR14/0/GenericMuscleCell/v', 'MDL12/0/GenericMuscleCell/caConc', 'VB6/0/GenericNeuronCell/v', 'MDL20/0/GenericMuscleCell/v', 'MVR18/0/GenericMuscleCell/v', 'MDL17/0/GenericMuscleCell/v', 'MVL22/0/GenericMuscleCell/caConc', 'MVL03/0/GenericMuscleCell/caConc', 'MVL06/0/GenericMuscleCell/v', 'MVL04/0/GenericMuscleCell/v', 'MDL08/0/GenericMuscleCell/caConc', 'MVR19/0/GenericMuscleCell/v', 'MVR05/0/GenericMuscleCell/caConc', 'MDL06/0/GenericMuscleCell/caConc', 't', 'VB11/0/GenericNeuronCell/caConc', 'MDL03/0/GenericMuscleCell/caConc', 'MVL19/0/GenericMuscleCell/v', 'MDR05/0/GenericMuscleCell/caConc', 'MVR23/0/GenericMuscleCell/v', 'MVL16/0/GenericMuscleCell/v', 'MDL17/0/GenericMuscleCell/caConc', 'MVL23/0/GenericMuscleCell/v', 'MVR16/0/GenericMuscleCell/caConc', 'MDR15/0/GenericMuscleCell/caConc', 'DB7/0/GenericNeuronCell/v', 'MDR06/0/GenericMuscleCell/v', 'VB4/0/GenericNeuronCell/v', 'MVR17/0/GenericMuscleCell/v', 'MDL18/0/GenericMuscleCell/v', 'MVR07/0/GenericMuscleCell/v', 'MDL14/0/GenericMuscleCell/caConc', 'VB9/0/GenericNeuronCell/caConc', 'MDL23/0/GenericMuscleCell/caConc', 'MVL18/0/GenericMuscleCell/v', 'MVL15/0/GenericMuscleCell/caConc', 'MDL03/0/GenericMuscleCell/v', 'MVL23/0/GenericMuscleCell/caConc', 'MVR20/0/GenericMuscleCell/caConc', 'MVL09/0/GenericMuscleCell/v', 'MVR06/0/GenericMuscleCell/v', 'MDL01/0/GenericMuscleCell/caConc', 'MDR12/0/GenericMuscleCell/caConc', 'MVL08/0/GenericMuscleCell/caConc', 'VB5/0/GenericNeuronCell/v', 'MDR10/0/GenericMuscleCell/caConc', 'DB7/0/GenericNeuronCell/caConc', 'MDR23/0/GenericMuscleCell/caConc', 'DB1/0/GenericNeuronCell/caConc', 'MVR16/0/GenericMuscleCell/v', 'MDL18/0/GenericMuscleCell/caConc', 'MDL10/0/GenericMuscleCell/caConc', 'MDL07/0/GenericMuscleCell/caConc', 'MVL06/0/GenericMuscleCell/caConc', 'MDR20/0/GenericMuscleCell/v', 'MDR23/0/GenericMuscleCell/v', 'MDL22/0/GenericMuscleCell/caConc', 'MVL10/0/GenericMuscleCell/caConc', 'MVR08/0/GenericMuscleCell/v', 'MVR20/0/GenericMuscleCell/v', 'MDR04/0/GenericMuscleCell/v', 'MVL09/0/GenericMuscleCell/caConc', 'MVL21/0/GenericMuscleCell/caConc', 'MVL20/0/GenericMuscleCell/v', 'VB8/0/GenericNeuronCell/caConc', 'VB4/0/GenericNeuronCell/caConc', 'MVL15/0/GenericMuscleCell/v', 'MVL13/0/GenericMuscleCell/caConc', 'MDL02/0/GenericMuscleCell/v', 'MVL02/0/GenericMuscleCell/v', 'MDR01/0/GenericMuscleCell/caConc', 'MDR07/0/GenericMuscleCell/caConc', 'MVR11/0/GenericMuscleCell/caConc', 'MVR18/0/GenericMuscleCell/caConc', 'MDL11/0/GenericMuscleCell/caConc', 'MDR07/0/GenericMuscleCell/v', 'MDL10/0/GenericMuscleCell/v', 'MVR09/0/GenericMuscleCell/v', 'MDL04/0/GenericMuscleCell/v', 'DB2/0/GenericNeuronCell/caConc', 'MVL02/0/GenericMuscleCell/caConc', 'MVL14/0/GenericMuscleCell/caConc', 'MDR17/0/GenericMuscleCell/caConc', 'DB2/0/GenericNeuronCell/v', 'MDL13/0/GenericMuscleCell/caConc', 'MDR06/0/GenericMuscleCell/caConc', 'MDR03/0/GenericMuscleCell/v', 'MDL22/0/GenericMuscleCell/v', 'MDR08/0/GenericMuscleCell/v', 'MDL01/0/GenericMuscleCell/v', 'MVL01/0/GenericMuscleCell/v', 'MDL12/0/GenericMuscleCell/v', 'MVR15/0/GenericMuscleCell/v', 'MVL04/0/GenericMuscleCell/caConc', 'AVBL/0/GenericNeuronCell/caConc', 'DB3/0/GenericNeuronCell/v', 'MVL18/0/GenericMuscleCell/caConc', 'MDL09/0/GenericMuscleCell/caConc', 'MDL20/0/GenericMuscleCell/caConc', 'MVL17/0/GenericMuscleCell/v', 'MVR11/0/GenericMuscleCell/v', 'MVL12/0/GenericMuscleCell/caConc', 'MDR12/0/GenericMuscleCell/v', 'AVBR/0/GenericNeuronCell/v', 'DB6/0/GenericNeuronCell/caConc', 'MVR06/0/GenericMuscleCell/caConc', 'MVR02/0/GenericMuscleCell/caConc', 'MDL04/0/GenericMuscleCell/caConc', 'MDL21/0/GenericMuscleCell/v', 'MVR07/0/GenericMuscleCell/caConc', 'MVR23/0/GenericMuscleCell/caConc', 'MDR24/0/GenericMuscleCell/v', 'MDR09/0/GenericMuscleCell/caConc', 'MVL08/0/GenericMuscleCell/v', 'MVR01/0/GenericMuscleCell/caConc', 'MVR03/0/GenericMuscleCell/v', 'MVR17/0/GenericMuscleCell/caConc', 'MVR22/0/GenericMuscleCell/caConc', 'MVR13/0/GenericMuscleCell/v', 'MVR21/0/GenericMuscleCell/caConc', 'MVR04/0/GenericMuscleCell/caConc', 'MDL05/0/GenericMuscleCell/v', 'MDL24/0/GenericMuscleCell/caConc', 'AVBR/0/GenericNeuronCell/caConc', 'MDL15/0/GenericMuscleCell/caConc', 'MVR10/0/GenericMuscleCell/caConc', 'MDL14/0/GenericMuscleCell/v', 'MDR19/0/GenericMuscleCell/caConc', 'MVL03/0/GenericMuscleCell/v', 'MDL21/0/GenericMuscleCell/caConc', 'MVL17/0/GenericMuscleCell/caConc', 'MVL21/0/GenericMuscleCell/v', 'MDR01/0/GenericMuscleCell/v', 'MVR12/0/GenericMuscleCell/v', 'MVR13/0/GenericMuscleCell/caConc', 'MVL11/0/GenericMuscleCell/v', 'MDR02/0/GenericMuscleCell/caConc', 'MDR24/0/GenericMuscleCell/caConc', 'MVL11/0/GenericMuscleCell/caConc', 'MDL07/0/GenericMuscleCell/v', 'MVR08/0/GenericMuscleCell/caConc', 'MDR22/0/GenericMuscleCell/caConc', 'MVR14/0/GenericMuscleCell/caConc', 'MVR12/0/GenericMuscleCell/caConc', 'MVL13/0/GenericMuscleCell/v', 'MDL15/0/GenericMuscleCell/v', 'MVR03/0/GenericMuscleCell/caConc', 'MDR08/0/GenericMuscleCell/caConc', 'VB10/0/GenericNeuronCell/v', 'MDR22/0/GenericMuscleCell/v', 'MDL19/0/GenericMuscleCell/v', 'MVL12/0/GenericMuscleCell/v', 'MDR21/0/GenericMuscleCell/v', 'VB7/0/GenericNeuronCell/caConc', 'VB6/0/GenericNeuronCell/caConc', 'VB10/0/GenericNeuronCell/caConc', 'VB8/0/GenericNeuronCell/v', 'MVR15/0/GenericMuscleCell/caConc']\n",
      "c302      >>>  All cells: ['VB11', 'VB10', 'VB9', 'VB8', 'VB7', 'VB6', 'VB5', 'VB4', 'VB3', 'VB2', 'VB1', 'DB7', 'DB6', 'DB5', 'DB4', 'DB3', 'DB2', 'DB1', 'AVBR', 'AVBL']\n",
      "c302      >>>  Plotting neuron voltages\n",
      "c302      >>>  Generating plots for: Membrane potentials of 20 neuron(s) (AVB_VB_DB C2)\n",
      "c302      >>>  Plotting muscle voltages\n",
      "c302      >>>  Generating plots for: Membrane potentials of 95 muscle(s) (AVB_VB_DB C2)\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXAAAAEWCAYAAAB/tMx4AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7fa09ce43bd0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAcYAAAEwCAYAAAAtqdEtAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7fa09d56f150>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXAAAAEWCAYAAAB/tMx4AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\neBAEQZvy/5UO9jCI174bAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7fa094a4bbd0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from runAndPlot import run_c302\n",
    "\n",
    "%matplotlib inline\n",
    "cells, cells_to_stimulate, params, muscles = run_c302('AVB_VB_DB','C2','',4000,0.05,'jNeuroML_NEURON',verbose=False, plot_ca=False, data_reader=\"UpdatedSpreadsheetDataReader\", config_package=\"notebooks.configs.AVB\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true,
    "scrolled": true
   },
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 2",
   "language": "python",
   "name": "python2"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 2
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython2",
   "version": "2.7.12"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 0
}
